Journal of Computing and Natural Science


Complex Dynamic Systems Theory for Cognitive Environment Approach



Journal of Computing and Natural Science

Received On : 13 February 2021

Revised On : 17 March 2021

Accepted On : 22 April 2021

Published On : 05 July 2021

Volume 01, Issue 03

Pages : 100-106


Abstract


Population Fluctuations (PF), Patch Variation (PV), and Food Webs (FW) are just a few of the areas where the Complex Dynamic Systems Theory (CDST) has made a significant impact on our understanding of the environment. Measures have been used to capture the variation between simple, disordered and ordered frameworks with local interactions that can generate surprising actions on a massive scale. But research shows that conventional explanations of convolution fail to take into account some major characteristics of ecological systems, an ideology that will limit the contributions of CDST to the entire ecosystem. In this paper, we have presented literature review of these characteristics of Environmental Convolution (EC), e.g. diversification, environmental variability, memory and cross-scale interactions, which progress to classical CDST. Advancements in these segments will be essential before CDST can be applicable in the comprehension of more vibrant systems in the environment.


Keywords


Complex Dynamic Systems Theory (CDST), Population Fluctuations (PF), Patch Variation (PV), Food Webs (FW)


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Cite this article


Madeleine Rannveig, “Complex Dynamic Systems Theory for Cognitive Environment Approach”, Journal of Computing and Natural Science, vol.1, no.3, pp. 100-106, July 2021. doi: 10.53759/181X/JCNS202101015.


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© 2021 Madeleine Rannveig. This is an open access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.